BOK.inddKarolinska Institutet, Stockholm, Sweden
POISONING
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70 Solna Cover: Peter Borotinskij ”Cyanide cloud” 2011. Printed
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978-91-7457-549-1
To my father – Who would have been so proud and my mother –Who made
it happen
1
ABSTRACT Approximately 120 people die every year due to fires in
Sweden. A majority of the fire victims die due to toxic fire gases.
Carbon monoxide is often thought to be the major cause of death.
Still, another very toxic fire gas, hydrogen cyanide, is formed
when materials containing nitrogen burn, e.g. wool or polyurethane
foam. The influence of cyanide to fire deaths is difficult to
assess due to post mortem break down of cyanide. Data on
carboxyhemoglobin and blood cyanide from deceased fire victims
during the period 1992-2009 were collected from two Swedish
nationwide forensic databases (ToxBase and RättsBase) (Study IV).
The analysis of these data supports the notion that hydrogen
cyanide contributes more to the cause of death among fire victims
than previously thought. Cyanide poisoning can be treated with
antidotes. Rapid initiation of the treatment is essential. However,
no good rapid diagnostic method is currently available. To bridge
this gap, we have investigated the possibility of using cyanide in
breath as an indicator to cyanide poisoning. In Study I, a low
concentration exposure to cyanide showed that the washout of
cyanide is rapid. Extrapolating this to a high concentration
exposure resulted in that exhaled air, a few minutes after exposure
to cyanide, will represent the systemic concentration of cyanide.
In Study II background levels of cyanide in breath was measured in
40 volunteers. The levels ranged from <1.5-14 ppb. Previously
published data on background levels of cyanide in breath range from
0 to 62 ppb. In Study III, a physiologically based toxicokinetic
model was developed to estimate the levels in exhaled breath after
a lethal/near-lethal exposure. The model indicated levels in the
range of 0.2-1 ppm. Comparing these results gives more than a
twofold difference between unexposed and exposed subject. Thus,
indicating that the groups could be separated from one another.
Hence, measurement of exhaled air in fire victims can be used to
indicate cyanide poisoning.
2
LIST OF PUBLICATIONS I. Washout kinetics of inhaled hydrogen
cyanide in breath
Kristin Stamyr, Pierre Nord and Gunnar Johanson Toxicology Letters,
2008, 179(1):59-62
II. Background levels of hydrogen cyanide in human breath measured
by infrared cavity ring down spectroscopy Kristin Stamyr, Olavi
Vaittinen, Janne Jaakola, Joseph Guss, Markus Metsälä, Gunnar
Johanson and Lauri Halonen Biomarkers, 2009; 14(5): 285–291
III. Physiologically-based toxicokinetic modelling of hydrogen
cyanide levels in human breath Kristin Stamyr and Gunnar Johanson
Manuscript
IV. Swedish Forensic Data 1992-2009 Suggest Hydrogen Cyanide as an
Important Cause of Death in Fire Victims Kristin Stamyr, Gunilla
Thelander, Lena Ernstgård, Johan Ahlner and Gunnar Johanson
Submitted
3
2.1 Overall
aim..........................................................................................
6 2.2 Specific aims
.......................................................................................
6
3 Cyanide
.........................................................................................................
7 3.1 Chemical properties
............................................................................
7 3.2 Exposure to cyanide
............................................................................
7
3.2.1 Kinetics
...................................................................................
8 3.2.2 Backgrounds levels of cyanide
.............................................. 8
3.3 Toxicity
...............................................................................................
8 3.3.1 Mode of action
........................................................................
9
4 Fires
.............................................................................................................
10 4.1 Oxygen defiency
...............................................................................
11 4.2 CO
.....................................................................................................
11 4.3 HCN
..................................................................................................
11 4.4 Statistics – Fire deaths
......................................................................
12
4.4.1 Sweden
..................................................................................
12 4.4.2 Other parts of the world
....................................................... 13
4.4.3 Discussion – Fire statistics
................................................... 17
4.5 Diagnose, Symptoms and Treatment
............................................... 17
4.5.1 Antidotes
...............................................................................
17 4.5.2 Discussion – Pre-hospital treatment
.................................... 18
5 The Washin-washout effect
........................................................................
20 6 Kinetic modelling
.......................................................................................
21
6.1 Physiologicaly based toxico kinetic modelling
............................... 21 7 Cavity Ring Down
Spectroscopy – CRDS
................................................ 25 8
Summary
.....................................................................................................
28
8.1 The washin-washout effect – Study I
............................................... 28 8.2
Backgroundlevels of cyanide in breath – Study II
........................... 28 8.3 PBTK - modelling of
HCN – Study III ............................................
29 8.4 Forensic data – Study IV
..................................................................
30
9 Conclusions and discussion
........................................................................
31 9.1 Concluding remarks
..........................................................................
31
10 Svensk sammanfattning
..............................................................................
33 11 Acknowledgements
....................................................................................
34 12 References
...................................................................................................
37
4
LIST OF ABBREVIATIONS AOM Acousto-optical modulator ATP Adenosine
triphosphate CCO Cytochrome C Oxidase CN- Cyanide CO Carbon
monoxide CO2 Carbon dioxide COHb Carboxyhaemoglobin CRDS
near-infrared Cavity ring down spectroscopy CTIF International
Technical Committee for the prevention and
extinction of Fire DAQ Data acquisition (card) H2O Water HCN
Hydrogen cyanide KCN Potassium cyanide MetHb Methaemoglobin MSB
Swedish Civil Contingencies Agency NaCN Sodium cyanide NH3 Ammonia
PBTK model Physiologically-based toxico-kinetic model pKa acid
dissociation constant ppb parts per billion ppm parts per million
SFPA The Swedish Fire Protection Association UK United Kingdom VRG
Vessel-rich group WHO World Health Organization
5
1 INTRODUCTION Approximately 120 people die every year due to fires
in Sweden (Erlandsson 2007, 2008; McIntyre et al. 2009; Lundqvist
et al. 2010). A majority of the fire victims die due to toxic fire
gases (Barillo et al. 1986). Carbon monoxide (CO) is often thought
to be the major cause of death (Simonson et al. 2001). Still,
another very toxic fire gas, hydrogen cyanide (HCN), is formed when
materials containing nitrogen burn, e.g. wool or polyurethane foam
(Purser 2000; Simonson et al. 2001). During the past 60 years
synthetic polymers, such as polyurethane foam, have been introduced
in buildings and furniture (Alarie 2002). Since nitrogen-containing
polymers release large amounts of HCN during incomplete combustion
(Purser 1992; 1996, 2000) the levels of cyanide in home fires are
expected to have increased. Cyanide has been suggested to have a
knockdown effect preventing escape and thereby causing death due to
CO or both toxins (Purser 2000). Therefore cyanide is suggested as
an important or major contribution to fatal outcomes (Purser 2000;
Simonson et al. 2001). Fire victims are routinely treated with
oxygen at the fire scene (Baud 2007; Hall et al. 2007). For cyanide
poisoning there are available antidotes. However, since there is no
available test method for field measurements (Baud 2007; Hall et
al. 2007) the actual number of victims suffering from cyanide
poisoning is unknown. Forensic data is difficult to use interpret
since break down of cyanide occurs post mortem (Moriya et al. 2001;
2003). Cyanide smells of bitter almonds (Musshoff et al. 2002).
Despite this cyanide in breath can be difficult to smell, since
concentrations are relatively low, many individuals fail to
identify the smell and remaining fire smoke in the airways is
likely to mask any smell of cyanide (Baud 2007). Still, the exhaled
breath is an interesting possibility for identification. Breath
sampling is in general easier to perform than blood sampling, as it
is non-invasive. However, more knowledge on the toxicokinetics of
cyanide is required to establish a dose-response relationships.
Among the things needed to be investigated is the concentration of
HCN in breath after life-threatening exposure levels. Since such
relations cannot, be studied experimentally in humans,
physiologically-based toxicokinetic (PBTK) modelling offers an
interesting and potentially useful alternative. Also, expected
background levels in the normal population are of high interest as
a comparison with the above mentioned data. Another kinetic measure
needed to be investigated is the relation between cyanide in
exhaled air and cyanide in blood versus cyanide in the exposure
(the washin – washout effect). This to make sure that potential
measurements in exhaled air after a exposure to high levels of
cyanide, represent the body burden and not the actual concentration
of the recently ended exposure.
6
2 RESEARCH AIMS 2.1 OVERALL AIM
The overall aim of the thesis was to evaluate the possibility of
using exhaled air as a rapid and non-invasive method to identify
cyanide poisoning. Additionally the method need to be appropriate
for a specific patient group: fire victims. 2.2 SPECIFIC AIMS
I. To study the importance of the washin–washout effect for inhaled
HCN in order
to determine if exhaled breath can be used to evaluate the systemic
levels of cyanide.
II. a. To measure the background levels of HCN in the breath of a
healthy population.
Such data is needed as a baseline for future comparison with the
levels of poisoned patients.
b. To test the cavity ring down spectroscopy instrument as a method
for cyanide breath measurements.
III. To develop a physiologically based toxicokinetic model for
inhalation exposure
to HCN in humans, with the purpose to estimate the concentration of
HCN in breath at lethal or near-lethal exposures.
IV. To investigate the impact of HCN in relation to CO as a cause
of death in fire
victims, which would serve as an indication as to the importance of
treatment of cyanide poisoning in fire victims.
7
3 CYANIDE The toxic effect of cyanide and cyanogenic glycosides has
been known of for thousands of years (Cummings 2004) and
hydrocyanic acid was isolated by Scheele already in 1782 (Cummings
2004). Cyanide exists in a wide variety of chemical structures with
the CN- anion as a common moiety. Exposure can occur via solid,
liquid or gas form. The sources can be natural, anthropogenic or
originate from industrial production (WHO 2004). Potassium cyanide
(KCN) and sodium cyanide (NaCN) are two out of may examples of
cyanide salts. Several of them are used in gold and silver
industries, dyeing, printing, photography, electroplating and in
the steel industry. They are also used in the synthesis process of
organic and inorganic chemicals (Montelius et al. 2001; WHO. 2004).
Hydrogen cyanide gas is a colourless or light blue gas. As a fluid,
hydrogen cyanide is very volatile and inflammable (Montelius et al.
2001; WHO 2004). Hydrogen cyanide smells of bitter almonds. The
odour threshold has been estimated to 0.2-5 ppm (Musshoff et al.
2002). Yet, many individuals are unable to smell HCN at all
(Holland et al. 1986). 3.1 CHEMICAL PROPERTIES
Cyanide is a weak acid with an acid dissociation constant (pKa) of
9.22 at 25°C WHO 2004). Other physical properties can be found in
Table 3.1.1.
Table 3.1.1 - Chemical properties of cyanide1
Hydrogen Cyanide Sodium cyanide Potassium Cyanide CAS number
74-90-8 143-33-9 151-50-8 Chemical structure HCN NaCN KCN Molecular
weight 27 49 65 Boiling point (°C) 26 1500 - Melting point (°C) -13
570 630 Vapour pressure (kPa, 20°C)
84 - -
1(Montelius et al. 2001) Conversion factors for HCN are: 1 mg/m3 =
0.89 ppm (20°C) 1 ppm = 1.12 mg/m3 (20°C) 3.2 EXPOSURE TO
CYANIDE
HCN is formed during incomplete combustion of nitrogen containing
polymers, for instance from polyurethanes, melamine and wool and
can therefore be found in fire gases (Purser 2000). HCN can also be
found in cigarette smoke (Roemer et al. 2004).
8
Exposure to cyanide can also originate from different food stuff,
via cyanogenic glycosides. Cyanide is formed as the cyanogenic
glycosides break down in the intestines. (Montelius et al. 2001).
Examples of food that contain cyanogenic glycosides are:
Cassava/(manioc, tapioca), bitter almonds, passion fruit, bamboo
sprout, bean sprout, linseed and in kernels of apricot, cherries,
peaches and plums (Montelius et al. 2001; WHO 2004). Since cyanide
is used as a fumigant, traces can also be found in other food. The
general public is normally exposed to low levels of HCN. Groups
with higher exposure are smokers, and workers involved in cassava
production or industries using cyanide (Montelius et al. 2001;
Roemer et al. 2004; WHO 2004). Sodium nitroprusside is a
vasodilation drug used to lower the blood pressure. One downside
with this medical drug is that it can lead to cyanide poisoning as
it breaks down in the blood stream (Schulz et al. 1982; Lundquist
et al. 1989). 3.2.1 Kinetics
HCN, KCN and NaCN are rapidly adsorbed via the lungs and the
gastro-intestinal tract. Cyanide can easily be absorbed through the
skin (Montelius et al. 2001). When cyanide has entered the blood it
will be reversibly bound to the methaemoglobin (MetHb) in the
erythrocytes, and via the blood cyanide can be effectively
distributed to the body. Cyanide in plasma may be metabolised, for
instance in the liver, kidneys and nose epithelia (Montelius et al.
2001). Eighty percent of the biotransformation takes place via the
sulphur transferase enzyme rhodanase and other sulphur transferases
to e.g. thiocyanate (Montelius et al. 2001). The availability of
the sulphur substrate is therefore important for the elimination of
cyanide from the body (Montelius et al. 2001). Thiocyanate is
excreted in urine (Lundquist et al. 1979; 1995). Smokers have been
seen to excrete more thiocyanate than non-smokers (Chandra et al.
1980). 3.2.2 Backgrounds levels of cyanide
For instance, Helicobacter pylori, the bacteria causing gastric
ulcer, has been shown to produce cyanide which is detectable in
breath (Graham et al. 1987). Another cyanide producing bacteria is
Pseudomonas aeruginosa (Castric 1975; Carroll et al. 2005). Cyanide
in breath may also originate from bacteria, foods containing
cyanogenic glycosides, tobacco smoke and inhalation of fire gases
(Boxer et al. 1952; Stelmaszynska 1985; Lundquist et al. 1988;
Jones 1998; Alarie 2002; Roemer et al. 2004; Carroll et al. 2005;
Lechner et al. 2005; 2006; Španl et al. 2007a; b; Wang et al.
2008). Also cigarette smoking give rise to cyanide exposure (Roemer
et al. 2004). Backgroundlevels of cyanide in breath range from 0 –
62 ppb (Lundquist et al. 1988; Španl et al. 2007a;b; Wang et al.
2008). 3.3 TOXICITY
Cyanide is highly toxic independent of the route of exposure. The
dose-effect curve is very steep (WHO 2004). Haber’s law states that
the relationship between the
9
concentration of a poisonous gas and the time required to reach a
certain effect is constant, see Equation 3.3.1.
(Equation 3.3.1)
where, C represents the concentration, t represents the required
time to reach the effect in question, k. However, as cyanide does
not follow Haber’s law (Montelius et al. 2001), extrapolations from
high to low doses are difficult to perform. 3.3.1 Mode of
action
Cyanide is toxic to the body by its ability to block the cellular
respiration, leading to anoxia WHO 2004). Cytochrome C Oxidase
(CCO), at the end of the electron transport chain, converts oxygen
to water. This process leads to production of adenosine
triphosphate (ATP). Cyanide in blood will reduce this process by
binding the ferric ion portion of CCO. Since ATP is the primary
source of energy for the cell, the reduction will lead to cellular
dysfunction or cellular death (Nelson 2006). In other words,
cyanide poisoning leads to inability of the cell to use available
oxygen in the blood stream. This may lead to venous blood with high
oxygen levels. Also high plasma lactate levels can be seen as the
cell will produce energy via the less effective anaerobic
metabolism pathway (Nelson 2006). Target organs for cyanide
poisoning are the central nervous system as well as the respiratory
and cardiovascular systems WHO 2004). Toxicity due to chronic
exposure is thought to be causes by toxicity from thiocyanate, a
byproduct from cyanide metabolism (WHO 2004). Here a potential
target organ is the endocrine system (WHO 2004). Chronic exposure
to cyanogenic glycosides has resulted in tropical ataxic neuropathy
and spastic paraparesis. In combination with low iodine status
hypothyroidism, goiter and cretinism have been seen (WHO
2004).
10
4 FIRES One major exposure to cyanide in via fire smoke. Cyanide is
yielded when nitrogen containing materials burn especially during
and incomplete burning process (Purser 2000). In a fire there are
many hazards. Not only toxic fire gases may pose a threat, smoke,
heat and lack of oxygen are also important factors affecting the
chance of survival (Erlandsson et al. 1999; Purser 2000). Figure
4.1 shows a well-developed fire that poses all of the mentioned
treats.
A fire has a great negative impact on the general condition of a
person. This will be manifested in several ways. A fire will give
rise to heat and an elevated body temperature, also resulting in
reduced state of consciousness and brain damage. Contact with hot
objects and hot air can cause swelling and burns in the respiratory
tract (Erlandsson et al. 1999; Purser 2000). Heat and burns may
lead to negative effects on the circulatory system and severely
affect the homeostasis. Burns can also result in decompositions of
the red blood cells. However, in an unconscious patient exposed to
fires, fire gas intoxication (e.g. by cyanide) can be strongly
suspected. Heat, irritation, pain and toxic fire gases will impair
a person’s possibilities to escape a fire (Erlandsson et al. 1999;
Purser 2000). Exposure to toxic fire gases can also give lead to
elevated methaemoglobin levels. This will reduce the oxygen
carrying capacity (Erlandsson et al. 1999; Purser 2000).
Figure 4.1 - Fire in industrial premises Photo: Karl
Andersson
11
4.1 OXYGEN DEFIENCY
To compensate for hypoxia, due to reduced amount of oxygen in the
air, the blood flow to the brain will increase. This can indirectly
lead to increased toxic exposure to the brain (Erlandsson et al.
1999; Purser 2000). The following symptoms can be seen depending on
the severity of the hypoxia: Increased breathing frequency,
increased heart rate, impaired ability of judgement, impaired short
term memory, stupor and shock (Erlandsson et al. 1999). 4.2
CO
Carbon monoxide (CO) is produced in high concentrations by
incomplete combustion of carbon-containing compounds. CO is
commonly thought to be the major cause of most fire-related
intoxications and deaths (Simonson et al. 2001). CO has
approximately 220 times higher affinity than oxygen for haemoglobin
and displaces the oxygen by forming carboxyhaemoglobin (COHb). The
resulting reduced oxygen supply capacity may lead to
unconsciousness, convulsions, cardiovascular collapse followed by
shock, and asphyxia. Mental and muscular performance is impaired at
about 30% COHb and fainting may occur (Alarie 2002). Levels above
50% are severely toxic and the fatal threshold has been assumed to
be 50% (Anderson et al. 1981a, b) However, also levels above 70%
COHb have been suggested (Widdop 2002) as a lethal threshold. . 4.3
HCN
Hydrogen cyanide (HCN) is another toxic gas that is generated
during fires. HCN is formed during incomplete combustion of
materials containing nitrogen, such as polyurethane foam, synthetic
rubber, melamine, silk and wool (Purser 2000; Simonson et al.
2001). Nitrogen-containing polymers release great amounts of
hydrogen cyanide (HCN) during incomplete combustion (Purser 1992;
1996; 2000). These materials are increasingly being used in homes
and other indoor environments (Alarie 2002). The combustion
conditions, oxygen supply and composition of the organic materials
are crucial for the concentrations of HCN and CO (Purser 1992).
Symptoms of cyanide poisoning are: rapid breathing, vertigo,
confusion, headache, nausea, vomiting, fatigue, impaired muscle
coordination, respiratory distress, cardiac arrhythmias, spasms,
unconsciousness and death (Montelius et al. 2001). Table 4.3.1
presents time to death for different HCN concentrations. Table
4.3.1 - Exposure concentration – duration relationship for human
inhalation exposure to hydrogen cyanide
Exposure level (ppm)
References
110 60 Flury et al. 1931 135 30 Hall et al. 1986 181 10 Hall et al.
1986 270 7 Flury et al. 1931
12
4.4 STATISTICS – FIRE DEATHS
Statistics on fire fatalities offers a possibility to evaluate the
need of better means to diagnose cyanide poisoning in fire victims.
4.4.1 Sweden
Approximately 120 people die every year due to fires in Sweden
(Erlandsson 2007, 2008; McIntyre et al. 2009; Lundqvist et al.
2010). This corresponds to 8-20 persons per million inhabitants see
Table 4.4.1. Table 4.4.1 - Number of fire deaths in Sweden
Year
Number of fire deaths according to data in Study IV
Number of fire related deaths according to Swedish Civil
Contingencies Agency – MSB1,2
1992 135 134 1993 129 119 1994 116 126 1995 128 107 1996 124 131
1997 161 152 1998 181 177 1999 104 110 2000 123 107 2001 149 133
2002 152 138 2003 146 134 2004 95 65 2005 106 104 2006 105 83 2007
110 97 2008 119 115 2009 120 114 Total 2303 2146 1,2 - (McIntyre et
al. 2009; Lundqvist et al. 2010)
The following criteria, valid from 1999, define what is to be
considered a fire fatality (Harrami et al. 2006; Erlandsson
2008):
the person must have died due to a fire or an explosive combustion
process death must have occurred within a month after the fire it
must be concluded that the victim was alive when the fire gases or
the flames
reached the body if the victim is involved in an accident or can be
suspected to have died due to illness, electricity or other
causes
The report of fire deaths is done by the local emergency services,
fire investigators, police investigating fires, surveillance of the
media, The Swedish Fire Protection
13
Association (SFPA) and investigators of traffic accidents. In some
cases information will be retrieved from The National Board of
Forensic Medicine (Erlandsson 2008).
The most common cause of a fire with deadly outcome is carelessness
when smoking (25% in 2000-2004) (Harrami et al. 2006). In at least
61% of the fatal domestic fires no smoke detectors were present
(2000-2004) (Harrami et al. 2006). Men have a higher risk than
women of dying in fires. Also elderly people are over-represented
(Harrami et al. 2006). Elderly and marginalized individuals
together stand for at least 60 % of the fire fatalities (Harrami et
al. 2006). The death rate has fallen with approximately 35% since
1945. It is not exactly known why, however, decline in the smoking
population is suspected as one reason. It has been noted that death
rates from males between the ages 15-64 due to burns have decreased
since 1945 (Harrami et al. 2006). Statistically, for every fire
fatality in Sweden it is estimated seven victims with serious
injuries as well as seven with minor injuries (Harrami et al.
2006). It has been noted by experts and fire fighters that the
development of a fire has become more rapid since the 1960s. This
change is attributed to the increasing amount of plastics included
in our homes (Harrami et al. 2006). The main strategy in Sweden to
reduce fires has been information to increase awareness of fire.
Further approaches are efforts to increase the amount of homes with
functioning smoke detectors as well as the building laws stating
that a house should be built so that a fire will not spread between
houses or apartments within the first hour (Harrami et al.
2006).
4.4.2 Other parts of the world
Since fires occur all over the world, cyanide poisoning in fire
victims is not a problem isolated to Sweden. Comparable statistics
for the whole world is difficult to find. However, The Geneva
Association, an international “think tank” for strategically
important insurance and risk management issues (Paish 2010) publish
summaries of fire statistics from selected countries every year.
Their data is collected by a questionnaire sent to national
correspondents and data that is available from The World Health
Organisation (Paish 2010). It is difficult to evaluate the validity
of the whole dataset since it is not specified how each and every
country count and report their data. Still, it is likely that the
report from each country is conducted in a similar way over time. A
combination of 13 reports is presented in Table 4.4.2 and Table
4.4.3. Most of the data appears to be rounded to the nearest 0-5-10
value. Every report presented data for a three-year period. On a
few occasions data in two successive years did not correspond to
each other. In such cases, the data from the most recent report was
chosen. The number of fire victims in 24 different countries over
the time period 1992 – 2007 can be studied in Table 4.4.2. To
enable a better comparison between the 24 countries Table 4.4.3
presents the same dataset however normalised for the total
population of the countries. The population data was retrieved from
two annual United Nation reports. Population data for 1992- 1998
from the 2001 Demographic Yearbook (United Nations. Statistical
Office 2003)
14
and 1999-2007 from the 2008 Demographic Yearbook (United Nations.
Statistical Office 2010). There is some overlap in these two data
sets. Where there were deviations between the 2001 and the 2008
yearbook the data from the 2008 yearbook was selected. Another
organisation that publishes fire statistics is CTIF (International
Technical Committee for the prevention and extinction of Fire). In
2000 they made a report on worldwide fire data (Brushlinski et al.
2000). Their data show a wide spread in number of deaths per
million inhabitants. Represented among the countries with the
highest values for fire deaths per inhabitants are several
countries from Eastern Europe, for example Estonia and Russia with
over and just below 100 fire deaths per year and one million
inhabitants, respectively (Brushlinski et al. 2000). In the same
report the average value for the whole world was estimated to be 10
fire deaths per million inhabitants.
15
45
35
35
di ng
fi re fi gh te rs d ea th s; d ea th
s i n bu
ild in gs o nl y
1 (W ilm
6. 5
5. 0
4. 9
2. 8
4. 9
8. 7
5. 7
5. 6
5. 6
di ng
fi re fi gh te rs d ea th s; d ea th
s i n bu
ild in gs o nl y
1 (W ilm
4.4.3 Discussion – Fire statistics
Comparing fire statistics between countries is not always an easy
task. There can be both differences in inclusion criteria as well
as different ways of retrieving information on the victims.
However, it is still important to be able to follow national
statistics over the years to better evaluate preventive actions.
Table 4.4.1 shows data on fire death statistics in Sweden. It shows
that the data from Study IV is generally somewhat higher than the
data from Swedish Civil Contingencies Agency (MSB). Firstly, there
is a slight difference between sources. The data in Study IV is
based on all medicolegal autopsies during the period, while the MSB
data was retrieved according to their channels. Secondly, there is
a difference in actual dating of the data: MSB data is dated the
year of the fire1 and data in Study IV is dated based on the date
the forensic analysis was made. As fire deaths during the winter
months are more common than during the summer months (McIntyre et
al. 2009), this might be a reason for this difference. Still, it
can be noted that the total number of fire deaths during the period
is about 10 % higher in Study IV compared to MSB data. MSB has,
independently of Study IV, started an inventory of their data. MSB
has connected their database with The National Board of Forensic
Medicines databases (the same as in Study IV) as well as The
National Board of Health and Welfare’s registry on cause of deaths.
Preliminary data shows that about 26% of Swedish fire deaths were
missed in the previous system for recording fire deaths1.
1(Personal communication Anders Jonson MSB, October 2011). 4.5
DIAGNOSE, SYMPTOMS AND TREATMENT
Unconscious patients from a fire are always treated with 100%
oxygen in Sweden. Antidotes can be used if cyanide poisoning is
suspected. Common antidotes in Sweden are hydroxocobalamine
(Cyanokit) or Sodium thiosulphate (Erlandsson et al. 1999). Rapid
initiation is required best treatment results. Since no rapid
direct diagnosis method is available indirect methods are used. A
typical clinical laboratory finding in acute cyanide poisoning is
metabolic acidosis with markedly elevated plasma lactate levels
(Borron 2006; Baud 2007). Since sooty fires often give rise to high
levels of HCN the presence of soot in the airways also can be used
as an indication of cyanide poisoning (Lawson-Smith et al. 2011).
4.5.1 Antidotes
A number of antidotes are used or have been proposed for treatment
of cyanide poisoning. Cyanide antidotes can be divided into four
different main groups: methaemoglobin-forming substances (e.g. amyl
nitrite), cobalt compounds (e.g. hydroxocobalamin), sulphur donors
(e.g. sodium thiosulphate) and cyanohydrin- forming agents (e.g.
alpha-ketoglutarate) (Hall et al. 1989; 2007; Bhattacharya et al.
2002; Baud 2007;).
18
Methaemoglobin-forming substances
Amyl nitrite will react with haemoglobin to form methaemoglobin.
Cyanide will bind reversibly to methaemoglobin and thereby reduce
the toxicity. However, in the particular case of fire victims, more
methaemoglobin is not recommended, since it will further reduce the
oxygen carrying capacity of the blood (Holland et al. 1986). Cobalt
compounds (e.g. hydroxocobalamin),
Hydroxocobalamin is a precursor to vitamin B12, and will bind
cyanide on one to one molar basis. Cyanokit is an antidote based on
hydroxocobalamin and will attract cyanide more than cytochrome
oxidase (Hall et al. 2007). Sulphur donors
Sodium thiosulphate can be used as a substrate for the
sulphur-substrate dependent metabolism since it is transferring
cyanide into thiocyanate (Cummings 2004). Cyanohydrin-forming
agents
Alpha-ketoglutarate is an example of a cyanohydrin forming agent. A
downside with this antidote is that it itself has toxic properties
and therefore is suitable only when cyanide poisoning is confirmed.
(Bhattacharya et al. 2002; 2004). Hydroxocobalamin and sodium
thiosulphate have been suggested as the preferred antidotes in fire
victims (Hall et al. 1989; 2007). 4.5.2 Discussion – Pre-hospital
treatment
To enable better treatment for fire victims it is essential that
the victims receive relevant treatment as soon as possible, ideally
already at the fire site as a part of the pre-hospital treatment.
It is vital that diagnose can be made as soon as possible.
Figure 4.2 - A Swedish ambulance. Possibly not the best transport
vehicle of a cyanide-diagnose equipment. Photo: Kristin
Stamyr
19
Both fire trucks and ambulances are equipped with oxygen. At least
in Stockholm ambulances are also equipped with thiosulphate.
However, Cyanokit is only available in special ambulances usually
ordered to the fire site and therefore delaying the process. On the
other hand, every single ambulance in the Stockholm area do not
have the need for Cyanokit very often, see Figure 4.2. Therefore
equipping all ambulances with Cyanokit is probably not the best
idea. Additionally, if there is a big fire the ambulance might
don´t carry enough antidotes.1 If a small, mobile, easy to use
device for diagnose of cyanide poisoning is developed possibly the
ambulances are not the best place to put it. A better idea could be
in the fire trucks, see Figure 4.3. For instance in the Stockholm
area there are just below 60 ambulances and about five fire command
cars (befälsbilar). The fire captain/outer chain of command will be
called to all verified apartment fires. One idea could be that the
fire department will bring both detector and antidotes. Even though
it may be administratively difficult to motivate that the fire
department should carry equipment that they will not use and also
to carry drugs that they are not allowed administer. Still if one
can overcome these potential administrative obstacles collaboration
between the fire department and the ambulance services might bring
a good practical solution to the problem. 1 1Personal
communication. Kjell Berglöf, fire captain/outer chain of command
(överbrandmästare/yttrebefäl) and co-workers at Vällingby fire
station, Oktober 2011.
Figure 4.3 - A Swedish fire truck, possibly a solution for
transportation of a future cyanide diagnose equipment and antidote
Photo: Kristin Stamyr
20
5 THE WASHIN-WASHOUT EFFECT The epithelial lining of the
respiratory tract is coated with a thin mucus layer in which
chemical vapours can dissolve during inhalation (washin). Hence,
during exhalation such chemicals can diffuse back to the
respiratory tract (washout). This process is referred to as the
washin-washout effect. The washin-washout effect is generally
neglectable for non-polar chemicals where the measurements of the
chemical substance in the exhaled air will only represent the
systemic concentration of the chemical. However, for polar
substances the washin- washout effect may be substantial and the
measured levels will then represent a combination of the external
exposure and the systemic concentration. This is why it is
important to have information of the size of the washin-washout
effect when performing breath measurements after inhalation
exposure. One way to estimate the size of the washin-washout effect
is to evaluate the half-life of the chemical substance by
performing a controlled inhalation exposure study. In such a study
subjects are exposed via inhalation to known air-concentrations of
the substance while the amount in exhaled air is monitored. This
was done in Study I (Figure 5.1) The half-life is dependent on the
mass flow (alveolar ventilation) and diffusion of the chemical in
the mucosa. Thus, it is proportional to the exposure level.
Therefore, the kinetics of the washin-washout effect can be
extrapolated to high exposure scenarios, based on the results from
a low exposure study.
The washin-washout effect has been described for several different
chemicals, in human (Landahl et al. 1950; Schrikker et al. 1985;
Johanson 1991; Mörk et al. 2006;. 2009) and animal studies (Morris
et al. 1986a; b).
Figure 5.1 - A controlled low concentration exposure to hydrogen
cyanide, to enable evaluation of the washin-washout effect
21
6 KINETIC MODELLING To evaluate human risks, associated with
exposure to toxic substances, a number of assumptions, estimations
and extrapolations are often required. On many occasions the
evaluations need to be based on animal data, alternative exposure
routes (e.g. oral instead of inhalation) or doses in a different
dose range. In these cases extrapolations are necessary (Clewell et
al. 2008). Modelling of kinetic data can be divided into two
different model groups: descriptive models and physiologically
based models. Descriptive models are often based on already
existing data that the model is fitted to, so called best fit. This
type of modelling may give a very good description of the data.
However, it can be difficult to draw conclusions outside the range
of the data set i.e. no new data is generated (Nestorov 2003). One
way to do extrapolations or to draw wider conclusions from the
dataset could be by using a physiologically-based toxicokinetic
model (PBTK modelling). The method is based on physiological and
biochemical descriptions of the species in question as well as
chemical-specific data (Clewell et al. 2008). 6.1 PHYSIOLOGICALY
BASED TOXICO KINETIC MODELLING In a PBTK model, the body is
described by dividing it into different compartments. Every
compartment represents and organ, a part of an organ or a group of
organs. The number of compartments used depends on the available
data and the chemical in question. One compartment for each and
every organ in the body, might give a very good description.
However, for a complicated model it will be difficult to find data
on all required parameters. If not enough good data is available,
the value of the use of many compartments will be reduced.
Generally, one tries to keep the model as simple as possible for
instance by grouping organs with similar properties together
(Nestorov 2003; Clewell et al. 2008). Normally, it is assumed that
the chemical behaves according to the “well-stirred” model, meaning
that the chemical is spread evenly and immediately within a
compartment. This is often a good approximation. There are also
models where a chemical concentration gradient over the organ is
assumed. In these cases a better description can be made by
dividing the organ into several sub-compartments. For example, for
inhaled polar solvents it is sometimes required to divide the lung
into several compartments (Johanson 1991; Mörk et al. 2006).
Another example is the model in Study II, where blood has been
divided into a plasma and an erythrocytes section based on the very
different affinity of cyanide. Creating a PBTK model can be
accomplished in the following way (Nestorov 2003):
1) Specify the model structure 2) Create equations 3) Estimate
required parameters
1) Specify the model structure PBTK models require that you have a
hypothesis about the substrate mechanisms. In PBTK models data,
mechanisms and choice of compartments are determined before the
model is created, while in conventional models, these
22
parameters are chosen according to how they fit the available data
(Nestorov 2003). As PBTK models are based on anatomical assumptions
like blood flows and properties of the different organs, it is
important to have some basic knowledge about the toxicokinetics and
toxicodynamics of the chemical. In Figure 6.1 a schematic
description of hypothetical PBTK model with exposure over the
inhalation route is presented. In a PBTK model the blood
circulation in the body is often represented by an arterial and a
venous part. If there are several exposure routes one compartment
for each route can be chosen. Exposure to a gas might lead to
exposure both from the skin and the lungs for some chemicals.
If the target organ is known, and sufficient physiological data is
available a compartment for this organ may be very useful. The
excretion from the body could take place as exhalation via the
lungs or after metabolism, for instance in the liver or in the
kidneys. The organs left are often lumped together, depending
Figure 6.1 - Schematic description of a PBTK inhalation model
Lungs
od
Exhalation
Metabolism
23
on their physiological properties. Two examples of common grouping
are VRG (vessel-rich group), and the Fat group.
2) Create equations The flows between the different compartments
are represented by arrows. These flows are described by setting up
a mass balance and constructing differential equations. In Figure
4.12 a two-compartment model is presented and in Equation 6.1.1 and
6.1.2 the differential equations to this model are presented. Where
C represents concentrations, Q flow, PB/A partition coefficient, kA
clearance and V compartment volumes.
(Equation 6.1.1)
3) Estimate required parameters Data used in the PBTK models can be
divided into equal groups: substrate independent and
substrate-specific data. Among the substrate independent parameters
are anatomical and physiological data. The substrate-specific
parameters describe the specific kinetics of the substrate and are
obtained from experimental data (Nestorov 2003). Typical parameters
required are: Compartment specific blood flows, volumes, partition
coefficients as well as metabolic parameters and ventilation
rates.
After this distribution and concentration profiles can then be
estimated by using a software for solving differential equations
e.g. Berkley Madonna (Macey and Oster, Berkeley, CA).
Figure 6.2 - A two- compartment model with metabolism
23
on their physiological properties. Two examples of common grouping
are VRG (vessel-rich group), and the Fat group.
2) Create equations The flows between the different compartments
are represented by arrows. And these flows are described by setting
up a mass balance and constructing differential equations. In
Figure 6.1.2 a two-compartment model is presented and in Equation
6.1.1 and 6.1.2 the differential equations to this model are
presented. Where C represents concentrations, Q flow, PB/A
partition coefficient, kA clearance and V compartment
volumes.
Figure 6.1.2 – A two- compartment model with metabolism
(Equation 6.1.1)
(Equation 6.1.2)
3) Estimate required parameters Data used in the PBTK models can be
divided into equal groups: substrate independent and
substrate-specific data. Among the substrates independent
parameters are anatomical and physiological data. The
substrate-specific parameters describing the specific kinetics of
the substrate and are obtained from experimental data (Nestorov
2003). Typical parameters required are: Compartment specific blood
flows, volumes, partition coefficients as well as metabolic
parameters and ventilation rates.
After this distribution and concentration profiles can then be
estimated by using a software for solving differential equations
e.g. Berkley Madonna. When the model is created it is time for
validation. Ideally two datasets one for construction of the model
and one for validation are used (Clewell et al. 2008).
24
When the model is created it has to be validated. Ideally two
datasets are used one for construction of the model and one for
validation (Clewell et al. 2008).
25
7 CAVITY RING DOWN SPECTROSCOPY – CRDS Cavity ring down
spectroscopy (CRDS) is a laser-based absorption technique with high
sensitivity suitable for trace gas analysis. There are three main
components required for a typical absorption experiment: a light
source, a sample (in a cell), and a detector, see Figure 7.1.
The sample gas is kept inside a cavity and a laser pulse is sent
into the cavity. In other absorption techniques, it is common to
directly measure the transmission. However, in CRDS the absorption
is estimated in another way. At each end of the cavity there are
one highly reflective mirror, often R>99.9% reflectance. The
laser pulse will reflect back and forth many times, which will give
a long cavity path length. Increasing the path length is the means
of increasing the sensitivity in absorption spectroscopy. A
detector is placed at the end of the cavity. This detector measures
the leakage from the mirrors. To record a spectral data point, the
incoming light is abruptly shut off and for a short period the
remaining (and decaying) light is recorded with a photodiode
operating as a detector. The shorter is the decay of light
(ring-down) the stronger is the absorption of the sample molecules.
One of the important advantages of CRDS over other absorption
techniques is that the whole exponential decay is measured rather
than a single intensity, eliminating the problem with fluctuations
in the laser intensity. The result is reduced baseline noise and
greater sensitivity. The sensitivity of the spectrometer allows
detection of the trace gases even below one ppb level (O'Keefe et
al. 1988; Berden et al. 2000; van der Sneppen et al. 2009). Figure
7.2 present a CRDS setup.
Figure 7.1 - Schematic representation of the cavity ring down
spectroscopy experimental setup. Thick lines are laser beams and
thin lines are signal cables. The laser beam, generated by the
external cavity diode laser, is switched via an acousto-optical
modulator (AOM) into the optical cavity. The light leaking from the
cavity is detected by a photoreceiver, the signal from which is
used to trigger the recording and to turn off the AOM. The signal
is processed by the data acquisition card (DAQ) before the computer
extracts a time constant and plots the spectrum (Stamyr K,
Vaittinen O, Jaakola J, Guss J, Metsala M, Johanson G and Halonen
L., Biomarkers, 2009; 14:285-91, copyright © 2009, Informa
Healthcare. Reproduced with permission of Informa Healthcare)
26
Form the ring down time the absorption and the concentration can be
calculated. By scanning the same sample over a variety of
wavelengths several chemicals can be quantified in the same sample
e.g. Figure 7.3 (Berden et al. 2000).
Figure 7.2 - Setup of the CRDS equipment at Helsinki University
Photo: Florian Schimidt
Figure 7.3 - Typical spectrum of the region of interest for
hydrogen (Stamyr K, Vaittinen O, Jaakola J, Guss J, Metsala M,
Johanson G and Halonen L., Biomarkers, 2009; 14:285-91, copyright ©
2009, Informa Healthcare. Reproduced with permission of Informa
Healthcare)
26
Form the ring down time the absorption and the concentration can be
calculated. By scanning the same sample over a variety of
wavelengths several chemicals can be quantified in the same sample
e.g. Figure 7.3 (Berden et al. 2000).
Figure 7.2 - Setup of the CRDS equipment at Helsinki University
Photo: Florian Schimidt
Figure 7.3 - Typical spectrum of the region of interest for
hydrogen (Stamyr K, Vaittinen O, Jaakola J, Guss J, Metsala M,
Johanson G and Halonen L., Biomarkers, 2009; 14:285-91, copyright ©
2009, Informa Healthcare. Reproduced with permission of Informa
Healthcare)
27
In Study II CRDS was used to measure background levels of cyanide
in healthy volunteers. The breath sampling procedure can be seen in
Figure 7.4.
Figure 7.4 - Breath sampling prior to a CRDS measurement
28
8 SUMMARY 8.1 THE WASHIN-WASHOUT EFFECT – STUDY I
In Study I the importance of the washin–washout effect for inhaled
HCN was investigated. By exposing healthy volunteers to low levels
(10 ppm or 11 mg/m3) of HCN for 1 min, and tracing the profile in
exhaled air it was concluded that the disappearance of HCN from the
respiratory system is rapid, with a half-life of between 10 and 24
s in exhaled breath. The average half-life in exhaled breath was
15.6 s. Extrapolating the results of Study I to a 1-min exposure at
100 ppm HCN, shows that the breath level would range from 0.0001 to
20 ppb 5min after the end of the exposure. Compared to background
levels of cyanide in breath (0-62 ppb) this suggests that the
respiratory washout effect of HCN can be neglected. Thus, the
concentration of hydrogen cyanide in breath might be used as an
indicator of systemic cyanide poisoning. This is, to our knowledge,
the first study that has investigated the kinetics of hydrogen
cyanide in breath. 8.2 BACKGROUNDLEVELS OF CYANIDE IN BREATH –
STUDY II
A CRDS method was developed for measurement of HCN in breath. This
method was used to investigate the background levels of 40 healthy
subjects. Participating in the study were 26 men and 14 females in
the age group 21-61 years. Of these were 8 smokers. All subjects
gave one breath sample which was analysed for HCN, NH3, CO2 and
H2O. The median level of HCN in breath was 4.4 ppb (range
<1.5–14 ppb). Five other studies report medians of 15 (3–33)
ppb, 10 (0–62) ppb, 6 (1–18) ppb, 13 ppb (4–14) and 4.7 (1.2-12.9)
(Lundquist et al. 1988; Španl et al. 2007a, b; Wang et al. 2008;
Schmidt et al. 2011). No correlation was observed with smoking
habits, recent meals or age. However, female subjects had slightly
higher breath levels of HCN than male subjects. Ammonia had a
median of 210 ppb (range 160–650 ppb), water 1.9% (1.7–2.5%) and
carbon dioxide 2.8%, (1.9–4.0%). In conclusion, CRDS is a useful
method for measuring the low background levels of HCN present in
breath. The detection limit is sufficiently low and the method is
non- invasive. Together with the relatively small sample sizes
required and that sample collection is easy to perform, it makes
CRDS suitable for breath measurement of HCN. In addition to HCN,
the breath components of carbon dioxide, ammonia and water can be
measured simultaneously, which adds further to the possibilities
for other types of breath-based diagnosis. CRDS has not previously
been used for this purpose.
29
8.3 PBTK - MODELLING OF HCN – STUDY III
A six compartment PBTK model was developed (Figure 8.1), describing
the time course for cyanide in blood, plasma and exhaled breath
during and after several simulated cyanide exposures.
Figure 8.1 – Schematic description of the PBTK model for hydrogen
cyanide. Symbols: Q – blood flows, C – cyanide concentrations, V –
compartment volumes, P – partition coefficients, Fp – fraction of
plasma to whole blood, S – amount of sulphur available for
thiocyanate formation, K – metabolic rate constants, Met –
metabolite formation rates.
30
Simulations of near-lethal exposure scenarios show that
post-exposure breath levels of HCN during the first few minutes,
after exposure, drops to about 0.2-1 ppm. These predicted breath
levels are about two orders of magnitude higher than the background
levels observed in non-exposed subjects. The purpose of the model
was to elucidate, through the use of a PBTK model, what
concentration of HCN could be expected in exhaled breath after a
near lethal exposure to HCN. These modelling efforts support the
notion that HCN in breath may be used to identify cyanide
poisoning. This PBTK model is, to our knowledge, the first of its
kind estimating lethal HCN levels in exhaled air. 8.4 FORENSIC DATA
– STUDY IV
In order to evaluate the contribution of HCN to fire-related
fatalities data on COHb and blood cyanide from deceased fire
victims in the period 1992-2009 were examined. The data was
collected from two Swedish nationwide forensic databases (ToxBase
and RättsBase). The databases contain data on COHb and/or cyanide
in blood from 2303 fire victims, whereof 816 contained both COHb
and cyanide information. The statistical analyses showed that 4% of
the victims had lethal or life-threatening blood cyanide levels
(> 2 µg/g). 32 % had lethal COHb levels (>50% COHb). Nearly
half of all fire victims (46%) had COHb levels at or above 30%.
More than 30% had cyanide levels above 0.5 µg/g, an indication of
significant HCN exposure. The cyanide levels may be underestimates,
as cyanide is quickly eliminated in blood also after death. Blood
cyanide was positively correlated to COHb (Rho=0.5, p<0.0001).
Blood cyanide was negatively correlated to age of victims but not
to chronological order, whereas COHb was positively correlated to
both age and chronology. No significant gender differences in blood
cyanide or COHb levels were seen. Nonparametric statistical tests
were used in the trend (Spearman) analyses and group comparisons
(Mann-Whitney U and Kruskal-Wallis). Our results support the notion
that HCN may be a more important cause of death among fire victims
than previously thought.
31
9 CONCLUSIONS AND DISCUSSION We have seen that effects of cyanide
on deceased fire victims are possibly more common than previously
thought. In Study IV, nearly one third of the fire victims had
blood cyanide levels above 0.5 µg/g, showing a considerable
exposure to HCN. Furthermore nearly half of all fire victims (46%)
had COHb levels at or above 30 %, where the combined exposure of
HCN and CO might contribute to the lethal effect leading to the
conclusion that treatment for cyanide poisoning is important in
fire victims. At this point there is no available method for field
measurements (Baud 2007). We have suggested measurements in exhaled
air as one way of diagnose of cyanide poisoning in fire victims.
When measuring cyanide in exhaled air after exposure to fire gases
it is important to establish whether the measurement reflects the
systemic effects of the fire victim or if they represent the
exposure levels in the fire. To answer this question the washout
kinetic of hydrogen cyanide was studied in a controlled exposure to
HCN. Extrapolating this low dose exposure to a high dose scenario
gives that the washout from the high doses exposure is rapid and
therefore measurement in exhaled air a few minutes after a high
concentration exposure, for instance after exposure to fire gases,
will represent the systemic effect. Hence, in theory measurement in
breath has the potential as a diagnostic method. To be able to
distinguish between victims that suffer from cyanide poisoning and
those how do not, expected breath levels in cyanide poisoning must
be estimated. Also normal levels of healthy subjects are required.
In Study II we measured background levels of HCN in exhaled breath.
Together with other published data, background levels of cyanide in
exhaled breath seem to be in the range of 0-62 ppb. Since, cyanide
does not follow Haber´s-law (see Equation 3.3.1) it is not possible
to do simple extrapolations concerning breath levels of HCN
corresponding those accepted after lethal or near-lethal exposures
to HCN. To be able to draw conclusions on the expected breath
levels after near-lethal exposures a PBTK model was developed in
Study III. The result of this study shows that breath levels after
near-lethal exposure can be expected to be about two orders of
magnitude higher that the background levels in the studied
populations. 9.1 CONCLUDING REMARKS
Many fires fatalities could be caused by cyanide poisoning or
having cyanide poisoning as a contributing factor. Cyanide
poisoning can be treated with antidotes. However, rapid initiation
of the treatment is essential. Today, no good rapid diagnostic
method is available. We have investigated the possibility of using
cyanide in breath as an indicator of cyanide poisoning. We have
established that the washout of cyanide after a high concentration
exposure is rapid. Therefore measurements in exhaled air a few
minutes after exposure to cyanide will represent the systemic
concentration of cyanide.
32
Our studies on background levels of cyanide in breath compared to
expected levels in poisoned people shows that the difference could
be sufficient to separate the two groups. Hence, measurement of
exhaled air in fire victims can be used to indicate cyanide
poisoning.
33
10 SVENSK SAMMANFATTNING I Sverige dör årligen cirka 120 personer i
bränder. Av dessa avlider de flesta till följd av exponering för
giftiga brandgaser. De flesta av dessa dödsfall hänförs till
kolmonoxid. Det finns dock flera andra giftiga gaser i brandrök.
Exempelvis bildas vätecyanid när kväveinnehållande material såsom
ull och polyuretanskum brinner. Man kan tänka sig att många
brandoffer dött till följd av cyanidförgiftning, alternativt efter
en kombination av cyanid- och kolmonoxidförgiftning. Dock är det
svårt att utvärdera cyanidens roll, bland annat eftersom cyanid
fortsätter brytas ner i kroppen även efter att brandoffret avlidit.
Blodnivåer av karboxyhemoglobin och cyanid från avlidna brandoffer
under perioden 1992-2009 samlades in från två svenska
rättsmedicinska nationella databaser (ToxBase and RättsBase)
(Studie IV). Analysen av dessa data stöder att vätecyanid bidrar
mer än vad man tidigare trott till dödsfall i samband med bränder.
För behandling av cyanid finns det tillgängliga motgifter. Det är
dock viktigt att behandlingen sätts in så fort som möjligt. Tyvärr
finns det i dagsläget ingen bra och snabb diagnosmetod för
cyanidförgiftning. Därför har vi undersökt möjligheten använda
nivåer av cyanid i utandningsluft för diagnostiskt syfte. I Studie
I kunde ett kontrollerat försök med exponering för en låg
koncentration vätecyanid visa att washout av cyanid i luftvägarna
sker snabbt. Om detta resultat extrapoleras till en exponering för
höga nivåer av cyanid, kan det ses att cyanidnivåerna i
utandningsluft, ett par minuter det att exponeringen upphört
representerar de systemiska nivåerna av cyanid i kroppen. I Studie
II mättes bakgrundsnivåerna av cyanid hos 40 frivilliga. De
uppmätta nivåerna låg mellan <1.5-14 ppb. Tidigare publicerade
data på normalbefolkningens cyanidnivåer ligger mellan 0 och 62
ppb. I Studie III konstruerades en fysiologiskt basserad
toxikokinetisk modell med avsikt att uppskatta vilka nivåer som kan
förväntas i utandningsluft efter exponering för dödliga eller
nästan dödliga nivåer av cyanid. Modellen indikerade nivåer i
området 0.2-1 ppm. En jämförelse mellan dessa resultat visar att
den exponerade gruppen ligger mer än två gånger högre än den
oexponerade gruppen. Detta indikerar att de båda grupperna borde
kunna särskiljas genom att jämföra nivåerna av cyanid i
utandningsluft. Därav kan man dra slutsatsen att mätningar av
cyanid i utandningsluft borde kunna användas för att indikera
cyanidförgiftning.
34
11 ACKNOWLEDGEMENTS Many people have contributed to my thesis with
their knowledge, time and support. I would like to start by
thanking my supervisors and co-authors Gunnar Johanson and Lena
Ernstgård. Gunnar, thank you for introducing me to the research
area of cyanide and fires and for believing in me, for teaching me
the scientific basics, for always making me try for myself first
and letting me take part in all projects from start to Finnish.
Thank you for sharing your knowledge in scientific writing and for
creating such a nice atmosphere at our unit. Lena, thank you for
being a solid base, always prepared, on time, well organised,
always making time for me and helping me with what I need the most,
when I need it the most. Hopefully many more students will have the
benefit of having you as their supervisor. To my other co-authors:
Gunilla Thelander, Janne Jaakola, Johan Ahlner, Joseph Guss, Lauri
Halonen, Markus Metsälä, Olavi Vaittinen and Pierre Nord. It has
been a pleasure working with you! Special thanks to Gunilla who has
patiently and promptly answered all my questions, even when she was
on vacation. I would also like to send grateful thoughts to all
staff at Laboratory of Physical Chemistry at the University of
Helsinki, who took great care of me and made me feel at home.
Thanks Delia for taking care of me during my free time. And thank
you Janne, for coming to the lab really early in the morning.
Olavi, thank you for opening your home to me, and introducing me to
your lovely family. Thank you for teaching me how to play tennis
and to ride a car for 30 minutes without saying almost nothing. It
was a real pleasure working with you. Kiitos avusta! Olet maailman
paras! I would particularly like to thank all volunteers both in
Stockholm and Helsinki, without you this work would not have been
possible. To all administrative personnel at IMM and KI who take
such good care of us students. I truly value your efforts. A
special thanks to Ann-Mari who always took such good care of all of
us at the unit. To all present and previous colleagues at the Unit
of Work Environment Toxicology and all “fika friends” in house 75
including: Afshin, Agneta, Aishwarya, Anders, Andy, Anna, Ann-Mari,
Anna-Karin A, Anna-Karin M, Barbara, Bengt, Birger, Birgit,
Birgitta, Emma, Fedor, Gunnar, Gustav, Hong, Irina, Jocke, Johan,
Johnny, Jill, Judith, Kannan, Katarina, Lena E, Lena P, Marc-André,
Margareta S, Margareta W, Maria, Marie, Matias, Mattias, Mia,
Monica, Nicole, Paula, Peter, Pierre, Sandra, Sara G, Sara S,
Stephanie, Tao, and Ulrika. Thank you for being friendly and
helpful and for all interesting chats at the coffee table! And for
all nice excursions and get-togethers.
35
Special thanks to Birger for all the help in the lab, for always
sharing your knowledge and for being an excellent roommate. Thank
you Tao and Bengt for checking up on me every now and then.
Thank you to my roommates Aashu and Stephanie for listening and
caring for me, especially during the past intensive months. Thank
you, Sandra and Stephanie for lunches, dinners, sewing evenings,
and great friendship. My most especial thanks to Matias and
Anna-Karin M who have been here during my whole PhD-studies. Thank
you for many scientific and private chats, for friendship and for
reading and commenting on my thesis!
Dr. David Wenkert, who had faith in me and was the first to let me
do research “on my own”. Anna Björklund for being my mentor and
guiding me through the academic world. Thank you! To ALL my friends
- Tack för att ni finns! La Familia thanks for great fun and
friendship and for always being there, even after not hearing from
me in months. Kattis, Jocke and Alfred, I promise to start inviting
you for dinners again- soon… Mathias, the door is always open for
you! Monica, for taking me through adventures and sorrows. And for
coming back to Sweden again! I miss living “next door” to you. Dr.
Clara for being such a positive and supportive person. You always
bring a smile and laughters. I hope that we can continue our
weekend meetings, however from now on, in the swimming hall. Thank
you Peter Borotinskij for making such a lovely painting for my
thesis cover. A big thank you to Karl Andersson, Florian Schmidt
and Peter Lindvall for letting me use your pictures in posters and
in my thesis. Anders, Anna, Caro, Frida, Heidi, Henrik, Inga-Lill,
Marie, Martin, Patrik, Peter and Shahzad, for not only been great
friends to my husband, but, for also becoming great friends of
mine. Thank you Heidi, Marie and Shahzad for language help and for
bringing over “a KRAM” when needed! Chatrine, Therese, Helena and
Linda for old and never ending sisterhood. And Cecilia and Magnus
for a new, hopefully long lasting, friendship. Olof and Björn for
keeping singing in my life. To my family: Mamma, Gunnar, Annsi,
Kalle, Johan, Viktor, Jonas, Izabell, Micke, Eddie, William,
Annika, Emil, Sara-Lisa, Ulf and Acke - You all have a special
place in my heart! To Matilda for being “Our little Miss Sunshine”
every morning! Sebastian, for standing by my side and loving me
through the whole PhD- process. For reading all my manuscripts and
my thesis. For putting up with my less charming sides and
supporting all my crazy ideas. For being my rock to hang on to when
life takes you out for a spin. Without you we would not have been
here today. You have given me “more than words”. And thank YOU for
taking the time to read my thesis!
36
I would also like to acknowledge the financial supporters of my
thesis: Ångpanneföreningen's Foundation for Research and
Development (ÅForsk), the Swedish National Board of Health and
Welfare, the Swedish Council for Working Life and Social Research,
the Academy of Finland, the QUASAAR EU-funded network, the Emil
Aaltonen Foundation, Karolinska Institutet and The Institute of
Environmental Medicine. Without your support this research would
not have been possible to perform.
37
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